Youk Ji Hyun, Kwak Jin Young, Lee Eunjung, Son Eun Ju, Kim Jeong-Ah
Department of Radiology, Gangnam Severance Hospital, Yonsei University College of Medicine, Seoul, Korea, Republic of.
Computational Science and Engineering, Yonsei University, Seoul, Korea, Republic of.
Ultraschall Med. 2020 Aug;41(4):390-396. doi: 10.1055/a-0917-6825. Epub 2019 Nov 8.
To identify and compare diagnostic performance of radiomic features between grayscale ultrasound (US) and shear-wave elastography (SWE) in breast masses.
We retrospectively collected 328 pathologically confirmed breast masses in 296 women who underwent grayscale US and SWE before biopsy or surgery. A representative SWE image of the mass displayed with a grayscale image in split-screen mode was selected. An ROI was delineated around the mass boundary on the grayscale image and copied and pasted to the SWE image by a dedicated breast radiologist for lesion segmentation. A total of 730 candidate radiomic features including first-order statistics and textural and wavelet features were extracted from each image. LASSO regression was used for data dimension reduction and feature selection. Univariate and multivariate logistic regression was performed to identify independent radiomic features, differentiating between benign and malignant masses with calculation of the AUC.
Of 328 breast masses, 205 (62.5 %) were benign and 123 (37.5 %) were malignant. Following radiomic feature selection, 22 features from grayscale and 6 features from SWE remained. On univariate analysis, all 6 SWE radiomic features (P < 0.0001) and 21 of 22 grayscale radiomic features (P < 0.03) were significantly different between benign and malignant masses. After multivariate analysis, three grayscale radiomic features and two SWE radiomic features were independently associated with malignant breast masses. The AUC was 0.929 for grayscale US and 0.992 for SWE (P < 0.001).
US radiomic features may have the potential to improve diagnostic performance for breast masses, but further investigation of independent and larger datasets is needed.
识别并比较乳腺肿块的灰阶超声(US)和剪切波弹性成像(SWE)的放射组学特征的诊断性能。
我们回顾性收集了296名女性的328个经病理证实的乳腺肿块,这些女性在活检或手术前接受了灰阶US和SWE检查。选择以分屏模式与灰阶图像一起显示的肿块的代表性SWE图像。由一名专业乳腺放射科医生在灰阶图像上围绕肿块边界划定感兴趣区(ROI),并复制粘贴到SWE图像上进行病变分割。从每个图像中提取了总共730个候选放射组学特征,包括一阶统计量、纹理特征和小波特征。采用套索回归进行数据降维和特征选择。进行单变量和多变量逻辑回归以识别独立的放射组学特征,通过计算曲线下面积(AUC)来区分良性和恶性肿块。
在328个乳腺肿块中,205个(62.5%)为良性,123个(37.5%)为恶性。经过放射组学特征选择后,灰阶图像保留了22个特征,SWE保留了6个特征。单变量分析显示,所有6个SWE放射组学特征(P<0.0001)和22个灰阶放射组学特征中的21个(P<0.03)在良性和恶性肿块之间有显著差异。多变量分析后,三个灰阶放射组学特征和两个SWE放射组学特征与恶性乳腺肿块独立相关。灰阶US的AUC为0.929,SWE的AUC为0.992(P<0.001)。
US放射组学特征可能有提高乳腺肿块诊断性能的潜力,但需要对独立的更大数据集进行进一步研究。